dc.contributor.author |
Langmore, Ian |
|
dc.contributor.author |
Krasner, Daniel |
|
dc.date.accessioned |
2023-07-01T01:22:45Z |
|
dc.date.available |
2023-07-01T01:22:45Z |
|
dc.date.issued |
2013 |
|
dc.identifier.uri |
${sadil.baseUrl}/handle/123456789/3732 |
|
dc.description |
141 p. (PDF) |
sm |
dc.description.abstract |
This book focuses more on the statistics end of things, while also getting readers going on (basic) programming & command line skills. It doesn’t, however, really go into much of the stuff you would expect to see from the machine learning end of things. |
sm |
dc.language.iso |
en |
sm |
dc.publisher |
Columbia University |
sm |
dc.subject |
Programming prerequisites |
sm |
dc.subject |
History and culture |
sm |
dc.subject |
The shell |
sm |
dc.subject |
Streams |
sm |
dc.subject |
Standard streams |
sm |
dc.subject |
Pipes |
sm |
dc.subject |
Philosophy |
sm |
dc.subject |
Version control with git |
sm |
dc.subject |
Online materials |
sm |
dc.subject |
Basic git concept |
sm |
dc.subject |
Common git workflows |
sm |
dc.subject |
Linear move from working to remote |
sm |
dc.subject |
Merge conflicts |
sm |
dc.subject |
Simple shell scripts |
sm |
dc.subject |
Template for a python CLI utility |
sm |
dc.subject |
Notation |
sm |
dc.subject |
Linear regression |
sm |
dc.subject |
Logistic regression |
sm |
dc.subject |
Models behaving well |
sm |
dc.subject |
Text data |
sm |
dc.subject |
Processing text |
sm |
dc.subject |
Python RE module |
sm |
dc.subject |
The python NLTK library |
sm |
dc.subject |
Naive bayes |
sm |
dc.title |
Applied Data Science |
sm |
dc.type |
Book |
sm |